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Unsupervised Real-Time Unusual Behavior Detection for Biometric-Assisted Visual Surveillance

机译:用于生物识别辅助视觉监视的无监督实时异常行为检测

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This paper presents a novel unusual behaviors detection algorithm to acquire biometric data for intelligent surveillance in real-time. Our work aims to design a completely unsupervised method for detecting unusual behaviors without using any explicit training dataset. To this end, the proposed approach learns from the behaviors recorded in the history; such that the definition of unusual behavior is modeled according to previous observations, but not a manually labeled dataset. To implement this, pyramidal Lucas-Kanade algorithm is employed to estimate the optical flow between consecutive frames, the results are encoded into flow histograms. Leveraging the correlations between the flow histograms, unusual actions can be detected by applying principal component analysis (PCA). This approach is evaluated under both indoor and outdoor surveillance scenarios. It shows promising results that our detection algorithm is able to discover unusual behaviors and adapt to changes in behavioral pattern automatically.
机译:本文提出了一种新颖的异常行为检测算法,可以实时获取生物特征数据进行智能监控。我们的工作旨在设计一种完全无监督的方法来检测异常行为,而无需使用任何显式的训练数据集。为此,所提出的方法是从历史记录的行为中学到的。这样就可以根据以前的观察结果对异常行为的定义进行建模,而不是根据手动标记的数据集进行建模。为了实现这一点,采用金字塔式Lucas-Kanade算法来估计连续帧之间的光流,将结果编码为流直方图。利用流量直方图之间的相关性,可以通过应用主成分分析(PCA)来检测异常动作。在室内和室外监视场景下都对这种方法进行了评估。它显示出令人鼓舞的结果,表明我们的检测算法能够发现异常行为并自动适应行为模式的变化。

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